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Evaluating the utility of dynamical downscaling in agricultural impacts projections

机译:评估动态缩减在农业影响预测中的效用

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摘要

Interest in estimating the potential socioeconomic costs of climate change has led to the increasing use of dynamical downscaling—nested modeling in which regional climate models (RCMs) are driven with general circulation model (GCM) output—to produce fine-spatial-scale climate projections for impacts assessments. We evaluate here whether this computationally intensive approach significantly alters projections of agricultural yield, one of the greatest concerns under climate change. Our results suggest that it does not. We simulate US maize yields under current and future CO2 concentrations with the widely used Decision Support System for Agrotechnology Transfer crop model, driven by a variety of climate inputs including two GCMs, each in turn downscaled by two RCMs. We find that no climate model output can reproduce yields driven by observed climate unless a bias correction is first applied. Once a bias correction is applied, GCM- and RCM-driven US maize yields are essentially indistinguishable in all scenarios (<10% discrepancy, equivalent to error from observations). Although RCMs correct some GCM biases related to fine-scale geographic features, errors in yield are dominated by broad-scale (100s of kilometers) GCM systematic errors that RCMs cannot compensate for. These results support previous suggestions that the benefits for impacts assessments of dynamically downscaling raw GCM output may not be sufficient to justify its computational demands. Progress on fidelity of yield projections may benefit more from continuing efforts to understand and minimize systematic error in underlying climate projections.
机译:对估算气候变化的潜在社会经济成本的兴趣导致了动态缩减规模的使用的增加(动态嵌套式建模,其中以通用循环模型(GCM)输出为驱动的区域气候模型(RCM)),以产生精细的空间尺度的气候预测用于影响评估。我们在这里评估这种计算密集型方法是否会显着改变对农业产量的预测,这是气候变化下最大的担忧之一。我们的结果表明事实并非如此。我们使用广泛使用的农业技术转移作物决策支持系统来模拟当前和未来CO2浓度下的美国玉米单产,该系统由多种气候输入(包括两个GCM)驱动,每个输入又被两个RCM缩减。我们发现,除非首先应用偏差校正,否则任何气候模型输出都无法复制由观测到的气候驱动的产量。进行偏差校正后,在所有情况下,由GCM和RCM驱动的美国玉米产量基本上是无法区分的(差异小于10%,等同于观察结果的误差)。尽管RCM纠正了一些与精细地理特征有关的GCM偏差,但产量误差主要由RCM无法弥补的大规模(100公里)GCM系统误差所控制。这些结果支持以前的建议,即动态缩小原始GCM输出的影响评估的好处可能不足以证明其计算需求。不断努力理解和最大程度降低基本气候预测中的系统误差,可能会进一步提高单产预测的逼真度。

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